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1.
IEEE Trans Biomed Eng ; 67(4): 1061-1073, 2020 04.
Artículo en Inglés | MEDLINE | ID: mdl-31329103

RESUMEN

OBJECTIVE: The diversity of tissue structure in histopathological images makes feature extraction for classification a challenging task. Dictionary learning within a sparse representation-based classification (SRC) framework has been shown to be successful for feature discovery. However, there exist stiff practical challenges: 1) computational complexity of SRC can be onerous in the decision stage since it involves solving a sparsity constrained optimization problem and often over a large number of image patches; and 2) images from distinct classes continue to share several geometric features. We propose a novel analysis-synthesis model learning with shared features algorithm (ALSF) for classifying such images more effectively. METHODS: In the ALSF, a joint analysis and synthesis learning model is introduced to learn the classifier and the feature extractor at the same time. Unlike SRC, no explicit optimization is needed in the inference phase leading to much reduced computation. Crucially, we introduce the learning of a low-rank shared dictionary and a shared analysis operator, which more accurately represents both similarities and differences in histopathological images from distinct classes. We also develop an extension of ALSF with a sparsity constraint, whose presence or absence facilitates a cost-performance tradeoff. RESULTS: The ALSF is evaluated on three challenging and well-known datasets: 1) spleen tissue images; 2) brain tumor images; and 3) breast cancer tissue dataset, provided by different organizations. CONCLUSION: Experimental results demonstrate both complexity and performance benefits of the ALSF over state-of-the-art alternatives. SIGNIFICANCE: Modeling shared features with appropriate quantitative constraints lead to significantly improved classification in histopathology.


Asunto(s)
Algoritmos , Técnicas Histológicas
2.
IEEE Trans Med Imaging ; 35(3): 738-51, 2016 Mar.
Artículo en Inglés | MEDLINE | ID: mdl-26513781

RESUMEN

In histopathological image analysis, feature extraction for classification is a challenging task due to the diversity of histology features suitable for each problem as well as presence of rich geometrical structures. In this paper, we propose an automatic feature discovery framework via learning class-specific dictionaries and present a low-complexity method for classification and disease grading in histopathology. Essentially, our Discriminative Feature-oriented Dictionary Learning (DFDL) method learns class-specific dictionaries such that under a sparsity constraint, the learned dictionaries allow representing a new image sample parsimoniously via the dictionary corresponding to the class identity of the sample. At the same time, the dictionary is designed to be poorly capable of representing samples from other classes. Experiments on three challenging real-world image databases: 1) histopathological images of intraductal breast lesions, 2) mammalian kidney, lung and spleen images provided by the Animal Diagnostics Lab (ADL) at Pennsylvania State University, and 3) brain tumor images from The Cancer Genome Atlas (TCGA) database, reveal the merits of our proposal over state-of-the-art alternatives. Moreover, we demonstrate that DFDL exhibits a more graceful decay in classification accuracy against the number of training images which is highly desirable in practice where generous training is often not available.


Asunto(s)
Histocitoquímica/métodos , Procesamiento de Imagen Asistido por Computador/métodos , Aprendizaje Automático , Neoplasias/diagnóstico por imagen , Humanos , Riñón/diagnóstico por imagen , Riñón/patología , Pulmón/diagnóstico por imagen , Pulmón/patología , Neoplasias/patología
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